利用决策图解读矿床成因分类:使用黄铁矿微量元素的案例研究

IF 2.7 3区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
Yu Wang, Kun-Feng Qiu, A. C. Telea, Zhao-Liang Hou, Tong Zhou, Yi-Wei Cai, Zheng-Jiang Ding, Hao-Cheng Yu, Jun Deng
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引用次数: 0

摘要

机器学习改进了地球化学判别图在矿床成因类型分类中的作用。然而,机器学习的 "黑箱 "特性日益得到认可,这阻碍了复杂数据分析的透明度,从而给深度地球化学解释带来了挑战。为了解决这个问题,我们重新研究了黄铁矿痕量元素,并建议使用 "决策图"--一种用于机器学习的前沿可视化技术。该技术通过可视化高维数据的 "决策边界 "来揭示矿床分类,这一概念对于模型解释、主动学习和领域适应至关重要。在地球化学数据分类方面,它使地质学家能够理解地质数据与决策边界之间的关系,评估预测的确定性,并观察数据分布趋势。这在传统判别图的洞察力特性与现代机器学习的高维效率之间架起了一座桥梁。利用黄铁矿痕量元素数据,我们构建了用于矿床类型分类的判别图,在保持机器学习准确性的同时,增加了宝贵的可视化洞察力。此外,我们还展示了决策图谱的两种应用。首先,我们展示了决策图如何帮助解决矿床的遗传类型争议,而这些矿床的数据并未用于模型训练。其次,我们展示了决策图如何帮助理解模型,从而进一步帮助找到黄铁矿的指示元素。决策图推荐的指示元素与地质学家的知识是一致的。这项研究证实了决策图在解释矿物成因类型分类问题上的有效性。在地球化学分类中,它标志着从传统的机器学习到视觉洞察方法的转变,从而增强了从模型中得出的地质认识。此外,我们的工作还意味着决策图可以适用于地球科学领域的各种分类挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpreting Mineral Deposit Genesis Classification with Decision Maps: A Case Study Using Pyrite Trace Elements
Machine learning improves geochemistry discriminant diagrams in classifying mineral deposit genetic types. However, the increasingly recognized ‘black box’ property of machine learning has been hampering the transparency of complex data analysis, leading to the challenge in deep geochemical interpretation. To address the issue, we revisited pyrite trace elements and propose to use ‘Decision Map’, a cutting-edge visualization technique for machine learning. This technique reveals mineral deposit classifications by visualizing the ‘decision boundaries’ of high-dimensional data, a concept crucial for model interpretation, active learning, and domain adaptation. In the context of geochemical data classification, it enables geologists to understand the relationship between geo-data and decision boundaries, assess prediction certainty, and observe the data distribution trends. This bridges the gap between the insightful properties of traditional discriminant diagrams and the high-dimensional efficiency of modern machine learning. Using pyrite trace element data, we construct a decision map for mineral deposit type classification, which maintains the accuracy of machine learning while adding valuable visualization insight. Additionally, we demonstrate two applications of decision maps. First, we show how decision maps can help resolve the genetic type dispute of a deposit whose data was not used in training the models. Second, we demonstrate how the decision maps can help understand the model, which further helps find indicator elements of pyrite. The recommended indicator elements by decision maps are consistent with geologists’ knowledge. This study confirms the decision map’s effectiveness in interpreting mineral genetic type classification problems. In geochemistry classification, it marks a shift from conventional machine learning to a visually insightful approach, thereby enhancing the geological understanding derived from the model. Furthermore, our work implies that decision maps could be applicable to diverse classification challenges in geosciences.
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来源期刊
American Mineralogist
American Mineralogist 地学-地球化学与地球物理
CiteScore
5.20
自引率
9.70%
发文量
276
审稿时长
1 months
期刊介绍: American Mineralogist: Journal of Earth and Planetary Materials (Am Min), is the flagship journal of the Mineralogical Society of America (MSA), continuously published since 1916. Am Min is home to some of the most important advances in the Earth Sciences. Our mission is a continuance of this heritage: to provide readers with reports on original scientific research, both fundamental and applied, with far reaching implications and far ranging appeal. Topics of interest cover all aspects of planetary evolution, and biological and atmospheric processes mediated by solid-state phenomena. These include, but are not limited to, mineralogy and crystallography, high- and low-temperature geochemistry, petrology, geofluids, bio-geochemistry, bio-mineralogy, synthetic materials of relevance to the Earth and planetary sciences, and breakthroughs in analytical methods of any of the aforementioned.
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